The stability of minor component analysis (MCA) learning algorithms is an important problem in many signal processing applications. In this paper, we propose an effective MCA learning algorithm that can offer better stability. The dynamics of the proposed algorithm are analyzed via a corresponding deterministic discrete time (DDT) system. It is proven that if the learning rate satisfies some mild conditions, almost all trajectories of the DDT system starting from points in an invariant set are bounded, and will converge to the minor component of the autocorrelation matrix of the input data. Simulation results will be furnished to illustrate the theoretical results achieved.<br /
AbstractIn most of existing principal components analysis (PCA) learning algorithms, the learning ra...
Literature on system identification reveals that persistently exiting inputs are needed in order to ...
AbstractThe stability and chaos of an ICA algorithm are investigated by analyzing the corresponding ...
Minor component analysis (MCA) is an important statistical tool for signal processing and data analy...
In this letter, we propose a class of self-stabilizing learning algorithms for minor component analy...
AbstractMinor component analysis (MCA) is a statistical method of extracting the eigenvector associa...
The eigenvector associated with the smallest eigenvalue of the autocorrelation matrix of input signa...
Abstract: Extracting multiple minor components from the in-put signal is quite useful for many pract...
This brief deals with the problem of minor component analysis (MCA). Artificial neural networks can ...
Recently, many unified learning algorithms have been developed to solve the task of principal compon...
Möller R. A self-stabilizing learning rule for minor component analysis. International Journal of Ne...
Abstract—The convergence of a class of Hyvärinen–Oja’s inde-pendent component analysis (ICA) learnin...
A novel random-gradient-based algorithm is developed for online tracking the minor component (MC) as...
Recently, a deterministic learning theory was proposed for identification and rapid pattern recognit...
The main problem with the soft-computing algorithms is a determination of their parameters. The tuni...
AbstractIn most of existing principal components analysis (PCA) learning algorithms, the learning ra...
Literature on system identification reveals that persistently exiting inputs are needed in order to ...
AbstractThe stability and chaos of an ICA algorithm are investigated by analyzing the corresponding ...
Minor component analysis (MCA) is an important statistical tool for signal processing and data analy...
In this letter, we propose a class of self-stabilizing learning algorithms for minor component analy...
AbstractMinor component analysis (MCA) is a statistical method of extracting the eigenvector associa...
The eigenvector associated with the smallest eigenvalue of the autocorrelation matrix of input signa...
Abstract: Extracting multiple minor components from the in-put signal is quite useful for many pract...
This brief deals with the problem of minor component analysis (MCA). Artificial neural networks can ...
Recently, many unified learning algorithms have been developed to solve the task of principal compon...
Möller R. A self-stabilizing learning rule for minor component analysis. International Journal of Ne...
Abstract—The convergence of a class of Hyvärinen–Oja’s inde-pendent component analysis (ICA) learnin...
A novel random-gradient-based algorithm is developed for online tracking the minor component (MC) as...
Recently, a deterministic learning theory was proposed for identification and rapid pattern recognit...
The main problem with the soft-computing algorithms is a determination of their parameters. The tuni...
AbstractIn most of existing principal components analysis (PCA) learning algorithms, the learning ra...
Literature on system identification reveals that persistently exiting inputs are needed in order to ...
AbstractThe stability and chaos of an ICA algorithm are investigated by analyzing the corresponding ...